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Unsupervised learning for text-to-speech synthesis

หน่วยงาน Edinburgh Research Archive, United Kingdom

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ชื่อเรื่อง : Unsupervised learning for text-to-speech synthesis
นักวิจัย : Watts, Oliver Samuel
คำค้น : unsupervised learning , vector space model , speech synthesis , TTS , text-to-speech
หน่วยงาน : Edinburgh Research Archive, United Kingdom
ผู้ร่วมงาน : King, Simon , Clark, Robert , Yamagishi, Junichi , Engineering and Physical Sciences Research Council (EPSRC)
ปีพิมพ์ : 2556
อ้างอิง : http://hdl.handle.net/1842/7982
ที่มา : -
ความเชี่ยวชาญ : -
ความสัมพันธ์ : O.Watts, J. Yamagishi, and S. King. The role of higher-level linguistic features in HMM-based speech synthesis. In Proc. Interspeech, pages 841-844, Makuhari, Japan, Sept. 2010a. , O. Watts, J. Yamagishi, and S. King. Letter-based speech synthesis. In Proc. Speech Synthesis Workshop 2010, pages 317-322, Nara, Japan, Sept. 2010b. , O. Watts, J. Yamagishi, and S. King. Unsupervised continuous-valued word features for phrase-break prediction without a part-of-speech tagger. In Proc. Interspeech, Florence, Italy, Aug. 2011. , J. Yamagishi and O. Watts. The CSTR/EMIME HTS System for Blizzard Challenge. In Proc. Blizzard Challenge 2010, Sept. 2010.
ขอบเขตของเนื้อหา : -
บทคัดย่อ/คำอธิบาย :

This thesis introduces a general method for incorporating the distributional analysis of textual and linguistic objects into text-to-speech (TTS) conversion systems. Conventional TTS conversion uses intermediate layers of representation to bridge the gap between text and speech. Collecting the annotated data needed to produce these intermediate layers is a far from trivial task, possibly prohibitively so for languages in which no such resources are in existence. Distributional analysis, in contrast, proceeds in an unsupervised manner, and so enables the creation of systems using textual data that are not annotated. The method therefore aids the building of systems for languages in which conventional linguistic resources are scarce, but is not restricted to these languages. The distributional analysis proposed here places the textual objects analysed in a continuous-valued space, rather than specifying a hard categorisation of those objects. This space is then partitioned during the training of acoustic models for synthesis, so that the models generalise over objects' surface forms in a way that is acoustically relevant. The method is applied to three levels of textual analysis: to the characterisation of sub-syllabic units, word units and utterances. Entire systems for three languages (English, Finnish and Romanian) are built with no reliance on manually labelled data or language-specific expertise. Results of a subjective evaluation are presented.

บรรณานุกรม :
Watts, Oliver Samuel . (2556). Unsupervised learning for text-to-speech synthesis.
    กรุงเทพมหานคร : Edinburgh Research Archive, United Kingdom .
Watts, Oliver Samuel . 2556. "Unsupervised learning for text-to-speech synthesis".
    กรุงเทพมหานคร : Edinburgh Research Archive, United Kingdom .
Watts, Oliver Samuel . "Unsupervised learning for text-to-speech synthesis."
    กรุงเทพมหานคร : Edinburgh Research Archive, United Kingdom , 2556. Print.
Watts, Oliver Samuel . Unsupervised learning for text-to-speech synthesis. กรุงเทพมหานคร : Edinburgh Research Archive, United Kingdom ; 2556.